首页> 外文会议>Technologies for Practical Robot Applications (TePRA), 2012 IEEE International Conference on >RGBD object recognition and visual texture classification for indoor semantic mapping
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RGBD object recognition and visual texture classification for indoor semantic mapping

机译:用于室内语义映射的RGBD对象识别和视觉纹理分类

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We present a mobile robot whose goal is to autonomously explore an unknown indoor environment and to build a semantic map containing high-level information similar to those extracted by humans. This information includes the rooms, their connectivity, the objects they contain and the material of the walls and ground. This robot was developed in order to participate in a French exploration and mapping contest called CAROTTE whose goal is to produce easily interpretable maps of an unknown environment. In particular we present our object detection approach based on a color+depth camera that fuse 3D, color and texture information through a neural network for robust object recognition. We also present the material recognition approach based on machine learning applied to vision. We demonstrate the performances of these modules on image databases and provide examples on the full system working in real environments.
机译:我们提出了一种移动机器人,其目标是自主探索未知的室内环境,并构建包含类似于人类提取的高级信息的语义图。该信息包括房间,它们的连通性,它们所包含的对象以及墙壁和地面的材料。开发该机器人是为了参加名为CAROTTE的法国探险与制图比赛,其目的是制作易于解释的未知环境地图。特别是,我们提出了一种基于彩色+深度相机的物体检测方法,该相机通过神经网络融合3D,颜色和纹理信息,从而实现了可靠的物体识别。我们还提出了基于机器学习的视觉材料识别方法。我们在图像数据库上演示了这些模块的性能,并提供了在实际环境中工作的整个系统的示例。

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